A High Dimensional Two-Sample Test Under a Low Dimensional Factor Structure

Yingying Ma, Wei Lan, Hansheng Wang
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引用次数: 25

Abstract

Existing high dimensional two-sample tests usually assume that different elements of a high dimensional predictor are weakly dependent. Such a condition can be violated when data follow a low dimensional latent factor structure. As a result, the recently developed two-sample testing methods are not directly applicable. To fulfill such a theoretical gap, we propose here a Factor Adjusted two-Sample Testing (FAST) procedure to accommodate the low dimensional latent factor structure. Under the null hypothesis, together with fairly weak technical conditions, we show that the proposed test statistic is asymptotically distributed as a weighted chi-square distribution with a finite number of degrees of freedom. This leads to a totally different test statistic and inference procedure, as compared with those of Bai and Saranadasa (1996) and Chen and Qin (2010). Simulation studies are carried out to examine its finite sample performance. A real example on China stock market is analyzed for illustration purpose.
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低维因子结构下的高维双样本检验
现有的高维双样本测试通常假设高维预测器的不同元素是弱相关的。当数据遵循低维潜在因子结构时,可能违反此条件。因此,最近发展的双样本测试方法并不直接适用。为了填补这一理论空白,我们提出了一个因子调整双样本测试(FAST)程序来适应低维潜在因子结构。在零假设下,加上相当弱的技术条件,我们证明了所提出的检验统计量是一个加权卡方分布,具有有限个自由度。这与Bai和Saranadasa(1996)以及Chen和Qin(2010)的检验统计量和推理过程完全不同。对其有限样本性能进行了仿真研究。本文以中国股票市场为例进行了分析。
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